

Justin Grimmer et al., "Text as Data: A New Framework for Machine Learning and the Social Sciences" (Princeton UP, 2022)
Sep 5, 2022
Justin Grimmer, Molly Roberts, and Brandon Stewart, experts in political science and sociology, discuss their groundbreaking work on text analysis for social sciences. They explore the intersection of machine learning and textual data, offering insights on how to navigate challenges of validation and causation. The trio highlights practical applications, from political communication to sentiment analysis. With a focus on bridging qualitative and quantitative approaches, they advocate for an iterative research design that adapts to the complexities of the digital age.
Chapters
Books
Transcript
Episode notes
1 2 3 4 5 6 7 8
Intro
00:00 • 2min
Text as Data: Analyzing Language in Social Sciences
01:31 • 6min
Navigating the Intersection of Machine Learning and Social Sciences
07:36 • 22min
Navigating Validation Challenges in Text Analysis
29:11 • 5min
Navigating the Complexities of Data Modeling in Social Science
34:21 • 3min
Navigating Textual Interpretations in Data Analysis
37:26 • 10min
Bridging Data Divides in Social Science
47:55 • 6min
Exploring the Depths of 'Text as Data' for Social Science Research
54:04 • 3min